Literature DB >> 17108382

Graph embedding and extensions: a general framework for dimensionality reduction.

Shuicheng Yan1, Dong Xu, Benyu Zhang, Hong-Jiang Zhang, Qiang Yang, Stephen Lin.   

Abstract

Over the past few decades, a large family of algorithms - supervised or unsupervised; stemming from statistics or geometry theory - has been designed to provide different solutions to the problem of dimensionality reduction. Despite the different motivations of these algorithms, we present in this paper a general formulation known as graph embedding to unify them within a common framework. In graph embedding, each algorithm can be considered as the direct graph embedding or its linear/kernel/tensor extension of a specific intrinsic graph that describes certain desired statistical or geometric properties of a data set, with constraints from scale normalization or a penalty graph that characterizes a statistical or geometric property that should be avoided. Furthermore, the graph embedding framework can be used as a general platform for developing new dimensionality reduction algorithms. By utilizing this framework as a tool, we propose a new supervised dimensionality reduction algorithm called Marginal Fisher Analysis in which the intrinsic graph characterizes the intraclass compactness and connects each data point with its neighboring points of the same class, while the penalty graph connects the marginal points and characterizes the interclass separability. We show that MFA effectively overcomes the limitations of the traditional Linear Discriminant Analysis algorithm due to data distribution assumptions and available projection directions. Real face recognition experiments show the superiority of our proposed MFA in comparison to LDA, also for corresponding kernel and tensor extensions.

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Mesh:

Year:  2007        PMID: 17108382     DOI: 10.1109/TPAMI.2007.12

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   6.226


  60 in total

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5.  Connectivity subnetwork learning for pathology and developmental variations.

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6.  web-rMKL: a web server for dimensionality reduction and sample clustering of multi-view data based on unsupervised multiple kernel learning.

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7.  node2vec: Scalable Feature Learning for Networks.

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Journal:  KDD       Date:  2016-08

8.  Genomic prediction based on data from three layer lines using non-linear regression models.

Authors:  Heyun Huang; Jack J Windig; Addie Vereijken; Mario P L Calus
Journal:  Genet Sel Evol       Date:  2014-11-06       Impact factor: 4.297

9.  Spatially Weighted Principal Component Regression for High-Dimensional Prediction.

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10.  Identifying group discriminative and age regressive sub-networks from DTI-based connectivity via a unified framework of non-negative matrix factorization and graph embedding.

Authors:  Yasser Ghanbari; Alex R Smith; Robert T Schultz; Ragini Verma
Journal:  Med Image Anal       Date:  2014-06-27       Impact factor: 8.545

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